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<h2>2D 度量</h2>
<p><a href="#section_list">List of Operators ↓</a></p>
<p>This chapter contains operators for 2D 度量.
</p>
<h3>Concept of 2D 度量</h3>
<p>With 2D 度量, you can measure the dimensions of objects that can be
represented by specific geometric primitives. The geometric shapes that can
be measured comprise circles, ellipses, rectangles, and lines. You need
approximate values for the positions, orientations, and dimensions of the
objects to measure. Then, the real edge positions of the objects in the image
are located near the boundaries of the approximate objects. With these edge
positions, the parameters of the geometric shapes are optimized to better fit
to the image data and are returned as measurement result.
</p>
<p>The approximate values for the shape parameters of an object as well as some
parameters that control the measurement are stored in a data structure that
is called metrology object.  The edges of the object in the image are located
within so-called measure regions.  These are rectangular regions that are
arranged perpendicular to the boundaries of the metrology objects. Parameters
that adjust the dimension and distribution of the measure regions are
specified together with the approximate shape parameters for each metrology
object.  When the measurement is applied, the edge positions inside all
measure regions are determined and fitted to geometric shapes using a RANSAC
algorithm. All metrology objects, all further information that is necessary
for the measurement, and the measurement results are stored in a data
structure that is called metrology model.
</p>
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</g>
</svg></td>
</tr>
<tr>
<td align="center">
        (
      1)
    </td>
<td align="center">
        (
      2)
    </td>
</tr>
</table>
<div style="margin-bottom:30px;text-align:center;" class="caption">
The geometric shapes in (1) are measured using
2D 度量 (2):
A metrology model with 4 metrology objects (blue contours) is created.
Using the edge positions (cyan crosses) located within the measure regions
(gray rectangles) for each metrology object, the geometric shapes
(green contours) are fitted and their parameters can be queried.
As shown for the circles, more than one instance per object can be found.
This image is from the example program <code>apply_metrology_model.hdev</code>.
</div>
</div>
<p>In the following, the steps that are required to use 2D 度量 are
described briefly.
</p>
<dl class="generic">


<dt><b>Create the metrology model and specify the image size:</b></dt>
<dd>


<p>First, a metrology model must be created using
</p>
<ul>
<li>
<p> <a href="create_metrology_model.html"><code><span data-if="hdevelop" style="display:inline"><code>create_metrology_model</code></span><span data-if="c" style="display:none"><code>create_metrology_model</code></span><span data-if="cpp" style="display:none"><code>CreateMetrologyModel</code></span><span data-if="com" style="display:none"><code>CreateMetrologyModel</code></span><span data-if="dotnet" style="display:none"><code>CreateMetrologyModel</code></span><span data-if="python" style="display:none"><code>create_metrology_model</code></span></code></a>.
</p>
</li>
</ul>

<p>The metrology model is used as a container for one or more metrology
objects.  For an efficient measurement, after creating the metrology
model, the image size of the image in which the measurements will be
performed should be specified using
</p>
<ul>
<li>
<p> <a href="set_metrology_model_image_size.html"><code><span data-if="hdevelop" style="display:inline"><code>set_metrology_model_image_size</code></span><span data-if="c" style="display:none"><code>set_metrology_model_image_size</code></span><span data-if="cpp" style="display:none"><code>SetMetrologyModelImageSize</code></span><span data-if="com" style="display:none"><code>SetMetrologyModelImageSize</code></span><span data-if="dotnet" style="display:none"><code>SetMetrologyModelImageSize</code></span><span data-if="python" style="display:none"><code>set_metrology_model_image_size</code></span></code></a>.
</p>
</li>
</ul>

</dd>

<dt><b>Provide approximate values:</b></dt>
<dd>


<p>Then, metrology objects are added to the metrology model. Each
metrology object consists of the approximate shape parameters for the
corresponding object in the image and of the parameters that control
the measurement. The parameters that control the measurement
comprise, e.g., parameters that specify the dimension and distribution of
the measure regions. Furthermore, several generic parameters can be
adjusted for each metrology object.  The metrology objects are
specified with
</p>
<ul>
<li>
<p> <a href="add_metrology_object_circle_measure.html"><code><span data-if="hdevelop" style="display:inline"><code>add_metrology_object_circle_measure</code></span><span data-if="c" style="display:none"><code>add_metrology_object_circle_measure</code></span><span data-if="cpp" style="display:none"><code>AddMetrologyObjectCircleMeasure</code></span><span data-if="com" style="display:none"><code>AddMetrologyObjectCircleMeasure</code></span><span data-if="dotnet" style="display:none"><code>AddMetrologyObjectCircleMeasure</code></span><span data-if="python" style="display:none"><code>add_metrology_object_circle_measure</code></span></code></a> for circles,
</p>
</li>
<li>
<p> <a href="add_metrology_object_ellipse_measure.html"><code><span data-if="hdevelop" style="display:inline"><code>add_metrology_object_ellipse_measure</code></span><span data-if="c" style="display:none"><code>add_metrology_object_ellipse_measure</code></span><span data-if="cpp" style="display:none"><code>AddMetrologyObjectEllipseMeasure</code></span><span data-if="com" style="display:none"><code>AddMetrologyObjectEllipseMeasure</code></span><span data-if="dotnet" style="display:none"><code>AddMetrologyObjectEllipseMeasure</code></span><span data-if="python" style="display:none"><code>add_metrology_object_ellipse_measure</code></span></code></a> for ellipses,
</p>
</li>
<li>
<p> <a href="add_metrology_object_rectangle2_measure.html"><code><span data-if="hdevelop" style="display:inline"><code>add_metrology_object_rectangle2_measure</code></span><span data-if="c" style="display:none"><code>add_metrology_object_rectangle2_measure</code></span><span data-if="cpp" style="display:none"><code>AddMetrologyObjectRectangle2Measure</code></span><span data-if="com" style="display:none"><code>AddMetrologyObjectRectangle2Measure</code></span><span data-if="dotnet" style="display:none"><code>AddMetrologyObjectRectangle2Measure</code></span><span data-if="python" style="display:none"><code>add_metrology_object_rectangle2_measure</code></span></code></a> for rectangles, and
</p>
</li>
<li>
<p> <a href="add_metrology_object_line_measure.html"><code><span data-if="hdevelop" style="display:inline"><code>add_metrology_object_line_measure</code></span><span data-if="c" style="display:none"><code>add_metrology_object_line_measure</code></span><span data-if="cpp" style="display:none"><code>AddMetrologyObjectLineMeasure</code></span><span data-if="com" style="display:none"><code>AddMetrologyObjectLineMeasure</code></span><span data-if="dotnet" style="display:none"><code>AddMetrologyObjectLineMeasure</code></span><span data-if="python" style="display:none"><code>add_metrology_object_line_measure</code></span></code></a> for lines.
</p>
</li>
<li>
<p> <a href="add_metrology_object_generic.html"><code><span data-if="hdevelop" style="display:inline"><code>add_metrology_object_generic</code></span><span data-if="c" style="display:none"><code>add_metrology_object_generic</code></span><span data-if="cpp" style="display:none"><code>AddMetrologyObjectGeneric</code></span><span data-if="com" style="display:none"><code>AddMetrologyObjectGeneric</code></span><span data-if="dotnet" style="display:none"><code>AddMetrologyObjectGeneric</code></span><span data-if="python" style="display:none"><code>add_metrology_object_generic</code></span></code></a> allows to create metrology
objects of different shapes (e.g., ellipse, circle,
etc.) using one operator.
</p>
</li>
</ul>

<p>To visually inspect the defined metrology objects, you can access
their XLD contours with 该算子
<a href="get_metrology_object_model_contour.html"><code><span data-if="hdevelop" style="display:inline"><code>get_metrology_object_model_contour</code></span><span data-if="c" style="display:none"><code>get_metrology_object_model_contour</code></span><span data-if="cpp" style="display:none"><code>GetMetrologyObjectModelContour</code></span><span data-if="com" style="display:none"><code>GetMetrologyObjectModelContour</code></span><span data-if="dotnet" style="display:none"><code>GetMetrologyObjectModelContour</code></span><span data-if="python" style="display:none"><code>get_metrology_object_model_contour</code></span></code></a>.  To visually inspect the
created measure regions, you can access their XLD contours with the
operator <a href="get_metrology_object_measures.html"><code><span data-if="hdevelop" style="display:inline"><code>get_metrology_object_measures</code></span><span data-if="c" style="display:none"><code>get_metrology_object_measures</code></span><span data-if="cpp" style="display:none"><code>GetMetrologyObjectMeasures</code></span><span data-if="com" style="display:none"><code>GetMetrologyObjectMeasures</code></span><span data-if="dotnet" style="display:none"><code>GetMetrologyObjectMeasures</code></span><span data-if="python" style="display:none"><code>get_metrology_object_measures</code></span></code></a>.
</p>
</dd>

<dt><b>Modify the model parameters:</b></dt>
<dd>


<p>If a camera calibration has been performed, the camera parameters and
the pose of the measurement plane can be set with
</p>
<ul>
<li>
<p> <a href="set_metrology_model_param.html"><code><span data-if="hdevelop" style="display:inline"><code>set_metrology_model_param</code></span><span data-if="c" style="display:none"><code>set_metrology_model_param</code></span><span data-if="cpp" style="display:none"><code>SetMetrologyModelParam</code></span><span data-if="com" style="display:none"><code>SetMetrologyModelParam</code></span><span data-if="dotnet" style="display:none"><code>SetMetrologyModelParam</code></span><span data-if="python" style="display:none"><code>set_metrology_model_param</code></span></code></a>.
</p>
</li>
</ul>

<p>Then, the result of the measurements returned by
<a href="get_metrology_object_result.html"><code><span data-if="hdevelop" style="display:inline"><code>get_metrology_object_result</code></span><span data-if="c" style="display:none"><code>get_metrology_object_result</code></span><span data-if="cpp" style="display:none"><code>GetMetrologyObjectResult</code></span><span data-if="com" style="display:none"><code>GetMetrologyObjectResult</code></span><span data-if="dotnet" style="display:none"><code>GetMetrologyObjectResult</code></span><span data-if="python" style="display:none"><code>get_metrology_object_result</code></span></code></a> will be in world coordinates. The
reference coordinate system in which the metrology objects are
defined can also be changed with <a href="set_metrology_model_param.html"><code><span data-if="hdevelop" style="display:inline"><code>set_metrology_model_param</code></span><span data-if="c" style="display:none"><code>set_metrology_model_param</code></span><span data-if="cpp" style="display:none"><code>SetMetrologyModelParam</code></span><span data-if="com" style="display:none"><code>SetMetrologyModelParam</code></span><span data-if="dotnet" style="display:none"><code>SetMetrologyModelParam</code></span><span data-if="python" style="display:none"><code>set_metrology_model_param</code></span></code></a>.
</p>
</dd>

<dt><b>Modify object parameters:</b></dt>
<dd>


<p>Many parameters can be set when adding the metrology objects to the
metrology model. Some of them can also be modified afterwards using
该算子
</p>
<ul>
<li>
<p> <a href="set_metrology_object_param.html"><code><span data-if="hdevelop" style="display:inline"><code>set_metrology_object_param</code></span><span data-if="c" style="display:none"><code>set_metrology_object_param</code></span><span data-if="cpp" style="display:none"><code>SetMetrologyObjectParam</code></span><span data-if="com" style="display:none"><code>SetMetrologyObjectParam</code></span><span data-if="dotnet" style="display:none"><code>SetMetrologyObjectParam</code></span><span data-if="python" style="display:none"><code>set_metrology_object_param</code></span></code></a>.
</p>
</li>
</ul>

</dd>

<dt><b>Align the metrology model:</b></dt>
<dd>


<p>To translate and rotate the metrology model before the next
measurement is performed, you can use 该算子
</p>
<ul>
<li>
<p> <a href="align_metrology_model.html"><code><span data-if="hdevelop" style="display:inline"><code>align_metrology_model</code></span><span data-if="c" style="display:none"><code>align_metrology_model</code></span><span data-if="cpp" style="display:none"><code>AlignMetrologyModel</code></span><span data-if="com" style="display:none"><code>AlignMetrologyModel</code></span><span data-if="dotnet" style="display:none"><code>AlignMetrologyModel</code></span><span data-if="python" style="display:none"><code>align_metrology_model</code></span></code></a>.
</p>
</li>
</ul>

<p>An alignment is temporary and is replaced by the next
alignment. The metrology model itself is not changed.  Note that
typically the alignment parameters are obtained using shape-based
matching.
</p>
</dd>

<dt><b>Apply the measurement:</b></dt>
<dd>


<p>The actual measurement in the image is performed with
</p>
<ul>
<li>
<p> <a href="apply_metrology_model.html"><code><span data-if="hdevelop" style="display:inline"><code>apply_metrology_model</code></span><span data-if="c" style="display:none"><code>apply_metrology_model</code></span><span data-if="cpp" style="display:none"><code>ApplyMetrologyModel</code></span><span data-if="com" style="display:none"><code>ApplyMetrologyModel</code></span><span data-if="dotnet" style="display:none"><code>ApplyMetrologyModel</code></span><span data-if="python" style="display:none"><code>apply_metrology_model</code></span></code></a>.
</p>
</li>
</ul>

<p>该算子 locates the edges within the measure regions and fits
the specified geometric shape to the edge positions using a RANSAC
algorithm. The edges are located internally using 该算子
<a href="measure_pos.html"><code><span data-if="hdevelop" style="display:inline"><code>measure_pos</code></span><span data-if="c" style="display:none"><code>measure_pos</code></span><span data-if="cpp" style="display:none"><code>MeasurePos</code></span><span data-if="com" style="display:none"><code>MeasurePos</code></span><span data-if="dotnet" style="display:none"><code>MeasurePos</code></span><span data-if="python" style="display:none"><code>measure_pos</code></span></code></a> or <a href="fuzzy_measure_pos.html"><code><span data-if="hdevelop" style="display:inline"><code>fuzzy_measure_pos</code></span><span data-if="c" style="display:none"><code>fuzzy_measure_pos</code></span><span data-if="cpp" style="display:none"><code>FuzzyMeasurePos</code></span><span data-if="com" style="display:none"><code>FuzzyMeasurePos</code></span><span data-if="dotnet" style="display:none"><code>FuzzyMeasurePos</code></span><span data-if="python" style="display:none"><code>fuzzy_measure_pos</code></span></code></a> (see also chapter
<a href="toc_1dmeasuring.html">1D 测量</a>).  The latter uses fuzzy
methods and is used only if at least one fuzzy function was set via
<a href="set_metrology_object_fuzzy_param.html"><code><span data-if="hdevelop" style="display:inline"><code>set_metrology_object_fuzzy_param</code></span><span data-if="c" style="display:none"><code>set_metrology_object_fuzzy_param</code></span><span data-if="cpp" style="display:none"><code>SetMetrologyObjectFuzzyParam</code></span><span data-if="com" style="display:none"><code>SetMetrologyObjectFuzzyParam</code></span><span data-if="dotnet" style="display:none"><code>SetMetrologyObjectFuzzyParam</code></span><span data-if="python" style="display:none"><code>set_metrology_object_fuzzy_param</code></span></code></a> before applying the
measurement.  If more than one instance of the returned object
shape is needed (compare image above), the generic parameter
<i><span data-if="hdevelop" style="display:inline"><code>'num_instances'</code></span><span data-if="c" style="display:none"><code>"num_instances"</code></span><span data-if="cpp" style="display:none"><code>"num_instances"</code></span><span data-if="com" style="display:none"><code>"num_instances"</code></span><span data-if="dotnet" style="display:none"><code>"num_instances"</code></span><span data-if="python" style="display:none"><code>"num_instances"</code></span></i> must be set to the number of instances
that should be returned.  The parameter can be set when adding the
individual metrology objects or afterwards with 该算子
<a href="set_metrology_object_param.html"><code><span data-if="hdevelop" style="display:inline"><code>set_metrology_object_param</code></span><span data-if="c" style="display:none"><code>set_metrology_object_param</code></span><span data-if="cpp" style="display:none"><code>SetMetrologyObjectParam</code></span><span data-if="com" style="display:none"><code>SetMetrologyObjectParam</code></span><span data-if="dotnet" style="display:none"><code>SetMetrologyObjectParam</code></span><span data-if="python" style="display:none"><code>set_metrology_object_param</code></span></code></a>.
</p>
</dd>

<dt><b>Access the results:</b></dt>
<dd>


<p>After the measurement, the results can be accessed. The parameters
of the adapted geometric shapes of the objects are queried with
该算子
</p>
<ul>
<li>
<p> <a href="get_metrology_object_result.html"><code><span data-if="hdevelop" style="display:inline"><code>get_metrology_object_result</code></span><span data-if="c" style="display:none"><code>get_metrology_object_result</code></span><span data-if="cpp" style="display:none"><code>GetMetrologyObjectResult</code></span><span data-if="com" style="display:none"><code>GetMetrologyObjectResult</code></span><span data-if="dotnet" style="display:none"><code>GetMetrologyObjectResult</code></span><span data-if="python" style="display:none"><code>get_metrology_object_result</code></span></code></a>.
</p>
</li>
</ul>

<p>Querying only the edges used for the returned result and their
amplitudes is also done using <a href="get_metrology_object_result.html"><code><span data-if="hdevelop" style="display:inline"><code>get_metrology_object_result</code></span><span data-if="c" style="display:none"><code>get_metrology_object_result</code></span><span data-if="cpp" style="display:none"><code>GetMetrologyObjectResult</code></span><span data-if="com" style="display:none"><code>GetMetrologyObjectResult</code></span><span data-if="dotnet" style="display:none"><code>GetMetrologyObjectResult</code></span><span data-if="python" style="display:none"><code>get_metrology_object_result</code></span></code></a>.
</p>
<p>The row and column coordinates of all located edges can be
accessed with
</p>
<ul>
<li>
<p> <a href="get_metrology_object_measures.html"><code><span data-if="hdevelop" style="display:inline"><code>get_metrology_object_measures</code></span><span data-if="c" style="display:none"><code>get_metrology_object_measures</code></span><span data-if="cpp" style="display:none"><code>GetMetrologyObjectMeasures</code></span><span data-if="com" style="display:none"><code>GetMetrologyObjectMeasures</code></span><span data-if="dotnet" style="display:none"><code>GetMetrologyObjectMeasures</code></span><span data-if="python" style="display:none"><code>get_metrology_object_measures</code></span></code></a>.
</p>
</li>
</ul>

<p>To visualize the adapted geometric shapes, you can access their
XLD contours with
</p>
<ul>
<li>
<p> <a href="get_metrology_object_result_contour.html"><code><span data-if="hdevelop" style="display:inline"><code>get_metrology_object_result_contour</code></span><span data-if="c" style="display:none"><code>get_metrology_object_result_contour</code></span><span data-if="cpp" style="display:none"><code>GetMetrologyObjectResultContour</code></span><span data-if="com" style="display:none"><code>GetMetrologyObjectResultContour</code></span><span data-if="dotnet" style="display:none"><code>GetMetrologyObjectResultContour</code></span><span data-if="python" style="display:none"><code>get_metrology_object_result_contour</code></span></code></a>.
</p>
</li>
</ul>

</dd>
</dl>
<h3>Further operators</h3>
<p>In addition to 该算子s mentioned above, you can copy the metrology
handle with <a href="copy_metrology_model.html"><code><span data-if="hdevelop" style="display:inline"><code>copy_metrology_model</code></span><span data-if="c" style="display:none"><code>copy_metrology_model</code></span><span data-if="cpp" style="display:none"><code>CopyMetrologyModel</code></span><span data-if="com" style="display:none"><code>CopyMetrologyModel</code></span><span data-if="dotnet" style="display:none"><code>CopyMetrologyModel</code></span><span data-if="python" style="display:none"><code>copy_metrology_model</code></span></code></a>, write the metrology model to file
with <a href="write_metrology_model.html"><code><span data-if="hdevelop" style="display:inline"><code>write_metrology_model</code></span><span data-if="c" style="display:none"><code>write_metrology_model</code></span><span data-if="cpp" style="display:none"><code>WriteMetrologyModel</code></span><span data-if="com" style="display:none"><code>WriteMetrologyModel</code></span><span data-if="dotnet" style="display:none"><code>WriteMetrologyModel</code></span><span data-if="python" style="display:none"><code>write_metrology_model</code></span></code></a>, read a model from file again using
<a href="read_metrology_model.html"><code><span data-if="hdevelop" style="display:inline"><code>read_metrology_model</code></span><span data-if="c" style="display:none"><code>read_metrology_model</code></span><span data-if="cpp" style="display:none"><code>ReadMetrologyModel</code></span><span data-if="com" style="display:none"><code>ReadMetrologyModel</code></span><span data-if="dotnet" style="display:none"><code>ReadMetrologyModel</code></span><span data-if="python" style="display:none"><code>read_metrology_model</code></span></code></a>, and serialize or deserialize a metrology model
using <a href="serialize_metrology_model.html"><code><span data-if="hdevelop" style="display:inline"><code>serialize_metrology_model</code></span><span data-if="c" style="display:none"><code>serialize_metrology_model</code></span><span data-if="cpp" style="display:none"><code>SerializeMetrologyModel</code></span><span data-if="com" style="display:none"><code>SerializeMetrologyModel</code></span><span data-if="dotnet" style="display:none"><code>SerializeMetrologyModel</code></span><span data-if="python" style="display:none"><code>serialize_metrology_model</code></span></code></a> or
<a href="deserialize_metrology_model.html"><code><span data-if="hdevelop" style="display:inline"><code>deserialize_metrology_model</code></span><span data-if="c" style="display:none"><code>deserialize_metrology_model</code></span><span data-if="cpp" style="display:none"><code>DeserializeMetrologyModel</code></span><span data-if="com" style="display:none"><code>DeserializeMetrologyModel</code></span><span data-if="dotnet" style="display:none"><code>DeserializeMetrologyModel</code></span><span data-if="python" style="display:none"><code>deserialize_metrology_model</code></span></code></a>.
</p>
<p>Furthermore, you can query various information from the metrology model. For
example, you can query the indices of the metrology objects with
<a href="get_metrology_object_indices.html"><code><span data-if="hdevelop" style="display:inline"><code>get_metrology_object_indices</code></span><span data-if="c" style="display:none"><code>get_metrology_object_indices</code></span><span data-if="cpp" style="display:none"><code>GetMetrologyObjectIndices</code></span><span data-if="com" style="display:none"><code>GetMetrologyObjectIndices</code></span><span data-if="dotnet" style="display:none"><code>GetMetrologyObjectIndices</code></span><span data-if="python" style="display:none"><code>get_metrology_object_indices</code></span></code></a>, query parameters that are valid for the
entire metrology model with <a href="get_metrology_model_param.html"><code><span data-if="hdevelop" style="display:inline"><code>get_metrology_model_param</code></span><span data-if="c" style="display:none"><code>get_metrology_model_param</code></span><span data-if="cpp" style="display:none"><code>GetMetrologyModelParam</code></span><span data-if="com" style="display:none"><code>GetMetrologyModelParam</code></span><span data-if="dotnet" style="display:none"><code>GetMetrologyModelParam</code></span><span data-if="python" style="display:none"><code>get_metrology_model_param</code></span></code></a>, query a fuzzy
parameter of a metrology model with <a href="get_metrology_object_fuzzy_param.html"><code><span data-if="hdevelop" style="display:inline"><code>get_metrology_object_fuzzy_param</code></span><span data-if="c" style="display:none"><code>get_metrology_object_fuzzy_param</code></span><span data-if="cpp" style="display:none"><code>GetMetrologyObjectFuzzyParam</code></span><span data-if="com" style="display:none"><code>GetMetrologyObjectFuzzyParam</code></span><span data-if="dotnet" style="display:none"><code>GetMetrologyObjectFuzzyParam</code></span><span data-if="python" style="display:none"><code>get_metrology_object_fuzzy_param</code></span></code></a>,
query the number of instances of the metrology objects of a metrology model
with <a href="get_metrology_object_num_instances.html"><code><span data-if="hdevelop" style="display:inline"><code>get_metrology_object_num_instances</code></span><span data-if="c" style="display:none"><code>get_metrology_object_num_instances</code></span><span data-if="cpp" style="display:none"><code>GetMetrologyObjectNumInstances</code></span><span data-if="com" style="display:none"><code>GetMetrologyObjectNumInstances</code></span><span data-if="dotnet" style="display:none"><code>GetMetrologyObjectNumInstances</code></span><span data-if="python" style="display:none"><code>get_metrology_object_num_instances</code></span></code></a>, and query the current
configuration of the metrology model with
<a href="get_metrology_object_param.html"><code><span data-if="hdevelop" style="display:inline"><code>get_metrology_object_param</code></span><span data-if="c" style="display:none"><code>get_metrology_object_param</code></span><span data-if="cpp" style="display:none"><code>GetMetrologyObjectParam</code></span><span data-if="com" style="display:none"><code>GetMetrologyObjectParam</code></span><span data-if="dotnet" style="display:none"><code>GetMetrologyObjectParam</code></span><span data-if="python" style="display:none"><code>get_metrology_object_param</code></span></code></a>.
</p>
<p>Additionally, you can reset all parameters of a metrology model using
<a href="reset_metrology_object_param.html"><code><span data-if="hdevelop" style="display:inline"><code>reset_metrology_object_param</code></span><span data-if="c" style="display:none"><code>reset_metrology_object_param</code></span><span data-if="cpp" style="display:none"><code>ResetMetrologyObjectParam</code></span><span data-if="com" style="display:none"><code>ResetMetrologyObjectParam</code></span><span data-if="dotnet" style="display:none"><code>ResetMetrologyObjectParam</code></span><span data-if="python" style="display:none"><code>reset_metrology_object_param</code></span></code></a> or reset only all fuzzy parameters and fuzzy
functions of a metrology model using
<a href="reset_metrology_object_fuzzy_param.html"><code><span data-if="hdevelop" style="display:inline"><code>reset_metrology_object_fuzzy_param</code></span><span data-if="c" style="display:none"><code>reset_metrology_object_fuzzy_param</code></span><span data-if="cpp" style="display:none"><code>ResetMetrologyObjectFuzzyParam</code></span><span data-if="com" style="display:none"><code>ResetMetrologyObjectFuzzyParam</code></span><span data-if="dotnet" style="display:none"><code>ResetMetrologyObjectFuzzyParam</code></span><span data-if="python" style="display:none"><code>reset_metrology_object_fuzzy_param</code></span></code></a>.
</p>
<h3>Glossary</h3>
<p>In the following, the most important terms that are used in the context of 2D
Metrology are described.
</p>
<dl class="generic">


<dt><b>metrology model</b></dt>
<dd>
<p>

Data structure that contains all metrology objects, all information
needed for the measurement, and the measurement results.
</p>
</dd>

<dt><b>metrology object</b></dt>
<dd>
<p>

Data structure for the object to be measured with 2D 度量. The
metrology object is represented by a specific geometric shape for
which the shape parameters are approximately known. Additionally, it
contains parameters that control the measurement, e.g., parameters
that specify the dimension and distribution of the measure regions.
</p>
</dd>

<dt><b>measure regions</b></dt>
<dd>
<p>

Rectangular regions that are arranged perpendicular to the
boundaries of the approximate objects. Within these regions the
edges that are used to get the exact shape parameters of the
metrology objects are extracted.
</p>
</dd>

<dt><b>returned instance of a metrology object</b></dt>
<dd>
<p>

For each metrology object, different instances of the object can be
returned by the measurement, e.g., if parallel structures of the
same shape exist near to the boundaries of the approximated
geometric shape (see image above). The sequence of the returned
instances is arbitrary, i.e., it is no measure for the quality of
the fitting.
</p>
</dd>
</dl>
<h3>Further Information</h3>
<p>See also the <code>“Solution Guide on 2D Measuring”</code> for further details
about 2D 度量.
</p>
<hr>
<h4 id="section_list">算子列表</h4>
<dl>
<dt><a href="add_metrology_object_circle_measure.html"><code><span data-if="hdevelop" style="display:inline;">add_metrology_object_circle_measure</span><span data-if="dotnet" style="display:none;">AddMetrologyObjectCircleMeasure</span><span data-if="python" style="display:none;">add_metrology_object_circle_measure</span><span data-if="cpp" style="display:none;">AddMetrologyObjectCircleMeasure</span><span data-if="c" style="display:none;">add_metrology_object_circle_measure</span></code></a></dt>
<dd>添加圆或圆弧到度量模型。</dd>
</dl>
<dl>
<dt><a href="add_metrology_object_ellipse_measure.html"><code><span data-if="hdevelop" style="display:inline;">add_metrology_object_ellipse_measure</span><span data-if="dotnet" style="display:none;">AddMetrologyObjectEllipseMeasure</span><span data-if="python" style="display:none;">add_metrology_object_ellipse_measure</span><span data-if="cpp" style="display:none;">AddMetrologyObjectEllipseMeasure</span><span data-if="c" style="display:none;">add_metrology_object_ellipse_measure</span></code></a></dt>
<dd>添加椭圆或椭圆弧到度量模型。</dd>
</dl>
<dl>
<dt><a href="add_metrology_object_generic.html"><code><span data-if="hdevelop" style="display:inline;">add_metrology_object_generic</span><span data-if="dotnet" style="display:none;">AddMetrologyObjectGeneric</span><span data-if="python" style="display:none;">add_metrology_object_generic</span><span data-if="cpp" style="display:none;">AddMetrologyObjectGeneric</span><span data-if="c" style="display:none;">add_metrology_object_generic</span></code></a></dt>
<dd>添加度量对象到度量模型。</dd>
</dl>
<dl>
<dt><a href="add_metrology_object_line_measure.html"><code><span data-if="hdevelop" style="display:inline;">add_metrology_object_line_measure</span><span data-if="dotnet" style="display:none;">AddMetrologyObjectLineMeasure</span><span data-if="python" style="display:none;">add_metrology_object_line_measure</span><span data-if="cpp" style="display:none;">AddMetrologyObjectLineMeasure</span><span data-if="c" style="display:none;">add_metrology_object_line_measure</span></code></a></dt>
<dd>添加一根线到度量模型。</dd>
</dl>
<dl>
<dt><a href="add_metrology_object_rectangle2_measure.html"><code><span data-if="hdevelop" style="display:inline;">add_metrology_object_rectangle2_measure</span><span data-if="dotnet" style="display:none;">AddMetrologyObjectRectangle2Measure</span><span data-if="python" style="display:none;">add_metrology_object_rectangle2_measure</span><span data-if="cpp" style="display:none;">AddMetrologyObjectRectangle2Measure</span><span data-if="c" style="display:none;">add_metrology_object_rectangle2_measure</span></code></a></dt>
<dd>添加一个矩形到度量模型。</dd>
</dl>
<dl>
<dt><a href="align_metrology_model.html"><code><span data-if="hdevelop" style="display:inline;">align_metrology_model</span><span data-if="dotnet" style="display:none;">AlignMetrologyModel</span><span data-if="python" style="display:none;">align_metrology_model</span><span data-if="cpp" style="display:none;">AlignMetrologyModel</span><span data-if="c" style="display:none;">align_metrology_model</span></code></a></dt>
<dd>Alignment of a metrology model.</dd>
</dl>
<dl>
<dt><a href="apply_metrology_model.html"><code><span data-if="hdevelop" style="display:inline;">apply_metrology_model</span><span data-if="dotnet" style="display:none;">ApplyMetrologyModel</span><span data-if="python" style="display:none;">apply_metrology_model</span><span data-if="cpp" style="display:none;">ApplyMetrologyModel</span><span data-if="c" style="display:none;">apply_metrology_model</span></code></a></dt>
<dd>Measure and fit the geometric shapes of all metrology objects of
a metrology model.</dd>
</dl>
<dl>
<dt><a href="clear_metrology_model.html"><code><span data-if="hdevelop" style="display:inline;">clear_metrology_model</span><span data-if="dotnet" style="display:none;">ClearMetrologyModel</span><span data-if="python" style="display:none;">clear_metrology_model</span><span data-if="cpp" style="display:none;">ClearMetrologyModel</span><span data-if="c" style="display:none;">clear_metrology_model</span></code></a></dt>
<dd>Delete a metrology model and free the allocated memory.</dd>
</dl>
<dl>
<dt><a href="clear_metrology_object.html"><code><span data-if="hdevelop" style="display:inline;">clear_metrology_object</span><span data-if="dotnet" style="display:none;">ClearMetrologyObject</span><span data-if="python" style="display:none;">clear_metrology_object</span><span data-if="cpp" style="display:none;">ClearMetrologyObject</span><span data-if="c" style="display:none;">clear_metrology_object</span></code></a></dt>
<dd>Delete metrology objects and free the allocated memory.</dd>
</dl>
<dl>
<dt><a href="copy_metrology_model.html"><code><span data-if="hdevelop" style="display:inline;">copy_metrology_model</span><span data-if="dotnet" style="display:none;">CopyMetrologyModel</span><span data-if="python" style="display:none;">copy_metrology_model</span><span data-if="cpp" style="display:none;">CopyMetrologyModel</span><span data-if="c" style="display:none;">copy_metrology_model</span></code></a></dt>
<dd>Copy a metrology model.</dd>
</dl>
<dl>
<dt><a href="create_metrology_model.html"><code><span data-if="hdevelop" style="display:inline;">create_metrology_model</span><span data-if="dotnet" style="display:none;">CreateMetrologyModel</span><span data-if="python" style="display:none;">create_metrology_model</span><span data-if="cpp" style="display:none;">CreateMetrologyModel</span><span data-if="c" style="display:none;">create_metrology_model</span></code></a></dt>
<dd>Create the data structure that is needed to measure geometric shapes.</dd>
</dl>
<dl>
<dt><a href="deserialize_metrology_model.html"><code><span data-if="hdevelop" style="display:inline;">deserialize_metrology_model</span><span data-if="dotnet" style="display:none;">DeserializeMetrologyModel</span><span data-if="python" style="display:none;">deserialize_metrology_model</span><span data-if="cpp" style="display:none;">DeserializeMetrologyModel</span><span data-if="c" style="display:none;">deserialize_metrology_model</span></code></a></dt>
<dd>Deserialize a serialized metrology model.</dd>
</dl>
<dl>
<dt><a href="get_metrology_model_param.html"><code><span data-if="hdevelop" style="display:inline;">get_metrology_model_param</span><span data-if="dotnet" style="display:none;">GetMetrologyModelParam</span><span data-if="python" style="display:none;">get_metrology_model_param</span><span data-if="cpp" style="display:none;">GetMetrologyModelParam</span><span data-if="c" style="display:none;">get_metrology_model_param</span></code></a></dt>
<dd>Get parameters that are valid for the entire metrology model.</dd>
</dl>
<dl>
<dt><a href="get_metrology_object_fuzzy_param.html"><code><span data-if="hdevelop" style="display:inline;">get_metrology_object_fuzzy_param</span><span data-if="dotnet" style="display:none;">GetMetrologyObjectFuzzyParam</span><span data-if="python" style="display:none;">get_metrology_object_fuzzy_param</span><span data-if="cpp" style="display:none;">GetMetrologyObjectFuzzyParam</span><span data-if="c" style="display:none;">get_metrology_object_fuzzy_param</span></code></a></dt>
<dd>Get a fuzzy parameter of a metroloy model.</dd>
</dl>
<dl>
<dt><a href="get_metrology_object_indices.html"><code><span data-if="hdevelop" style="display:inline;">get_metrology_object_indices</span><span data-if="dotnet" style="display:none;">GetMetrologyObjectIndices</span><span data-if="python" style="display:none;">get_metrology_object_indices</span><span data-if="cpp" style="display:none;">GetMetrologyObjectIndices</span><span data-if="c" style="display:none;">get_metrology_object_indices</span></code></a></dt>
<dd>Get the indices of the metrology objects of a metrology model.</dd>
</dl>
<dl>
<dt><a href="get_metrology_object_measures.html"><code><span data-if="hdevelop" style="display:inline;">get_metrology_object_measures</span><span data-if="dotnet" style="display:none;">GetMetrologyObjectMeasures</span><span data-if="python" style="display:none;">get_metrology_object_measures</span><span data-if="cpp" style="display:none;">GetMetrologyObjectMeasures</span><span data-if="c" style="display:none;">get_metrology_object_measures</span></code></a></dt>
<dd>Get the measure regions and the results of the edge location for the
metrology objects of a metrology model.</dd>
</dl>
<dl>
<dt><a href="get_metrology_object_model_contour.html"><code><span data-if="hdevelop" style="display:inline;">get_metrology_object_model_contour</span><span data-if="dotnet" style="display:none;">GetMetrologyObjectModelContour</span><span data-if="python" style="display:none;">get_metrology_object_model_contour</span><span data-if="cpp" style="display:none;">GetMetrologyObjectModelContour</span><span data-if="c" style="display:none;">get_metrology_object_model_contour</span></code></a></dt>
<dd>Query the model contour of a metrology object in image coordinates. </dd>
</dl>
<dl>
<dt><a href="get_metrology_object_num_instances.html"><code><span data-if="hdevelop" style="display:inline;">get_metrology_object_num_instances</span><span data-if="dotnet" style="display:none;">GetMetrologyObjectNumInstances</span><span data-if="python" style="display:none;">get_metrology_object_num_instances</span><span data-if="cpp" style="display:none;">GetMetrologyObjectNumInstances</span><span data-if="c" style="display:none;">get_metrology_object_num_instances</span></code></a></dt>
<dd>Get the number of instances of the metrology objects of a metrology model.</dd>
</dl>
<dl>
<dt><a href="get_metrology_object_param.html"><code><span data-if="hdevelop" style="display:inline;">get_metrology_object_param</span><span data-if="dotnet" style="display:none;">GetMetrologyObjectParam</span><span data-if="python" style="display:none;">get_metrology_object_param</span><span data-if="cpp" style="display:none;">GetMetrologyObjectParam</span><span data-if="c" style="display:none;">get_metrology_object_param</span></code></a></dt>
<dd>Get one or several parameters of a metrology model.</dd>
</dl>
<dl>
<dt><a href="get_metrology_object_result.html"><code><span data-if="hdevelop" style="display:inline;">get_metrology_object_result</span><span data-if="dotnet" style="display:none;">GetMetrologyObjectResult</span><span data-if="python" style="display:none;">get_metrology_object_result</span><span data-if="cpp" style="display:none;">GetMetrologyObjectResult</span><span data-if="c" style="display:none;">get_metrology_object_result</span></code></a></dt>
<dd>Get the results of the measurement of a metrology model.</dd>
</dl>
<dl>
<dt><a href="get_metrology_object_result_contour.html"><code><span data-if="hdevelop" style="display:inline;">get_metrology_object_result_contour</span><span data-if="dotnet" style="display:none;">GetMetrologyObjectResultContour</span><span data-if="python" style="display:none;">get_metrology_object_result_contour</span><span data-if="cpp" style="display:none;">GetMetrologyObjectResultContour</span><span data-if="c" style="display:none;">get_metrology_object_result_contour</span></code></a></dt>
<dd>Query the result contour of a metrology object. </dd>
</dl>
<dl>
<dt><a href="read_metrology_model.html"><code><span data-if="hdevelop" style="display:inline;">read_metrology_model</span><span data-if="dotnet" style="display:none;">ReadMetrologyModel</span><span data-if="python" style="display:none;">read_metrology_model</span><span data-if="cpp" style="display:none;">ReadMetrologyModel</span><span data-if="c" style="display:none;">read_metrology_model</span></code></a></dt>
<dd>Read a metrology model from a file.</dd>
</dl>
<dl>
<dt><a href="reset_metrology_object_fuzzy_param.html"><code><span data-if="hdevelop" style="display:inline;">reset_metrology_object_fuzzy_param</span><span data-if="dotnet" style="display:none;">ResetMetrologyObjectFuzzyParam</span><span data-if="python" style="display:none;">reset_metrology_object_fuzzy_param</span><span data-if="cpp" style="display:none;">ResetMetrologyObjectFuzzyParam</span><span data-if="c" style="display:none;">reset_metrology_object_fuzzy_param</span></code></a></dt>
<dd>Reset all fuzzy parameters and fuzzy functions of a metrology
model.</dd>
</dl>
<dl>
<dt><a href="reset_metrology_object_param.html"><code><span data-if="hdevelop" style="display:inline;">reset_metrology_object_param</span><span data-if="dotnet" style="display:none;">ResetMetrologyObjectParam</span><span data-if="python" style="display:none;">reset_metrology_object_param</span><span data-if="cpp" style="display:none;">ResetMetrologyObjectParam</span><span data-if="c" style="display:none;">reset_metrology_object_param</span></code></a></dt>
<dd>Reset all parameters of a metrology model.</dd>
</dl>
<dl>
<dt><a href="serialize_metrology_model.html"><code><span data-if="hdevelop" style="display:inline;">serialize_metrology_model</span><span data-if="dotnet" style="display:none;">SerializeMetrologyModel</span><span data-if="python" style="display:none;">serialize_metrology_model</span><span data-if="cpp" style="display:none;">SerializeMetrologyModel</span><span data-if="c" style="display:none;">serialize_metrology_model</span></code></a></dt>
<dd>Serialize a metrology model.</dd>
</dl>
<dl>
<dt><a href="set_metrology_model_image_size.html"><code><span data-if="hdevelop" style="display:inline;">set_metrology_model_image_size</span><span data-if="dotnet" style="display:none;">SetMetrologyModelImageSize</span><span data-if="python" style="display:none;">set_metrology_model_image_size</span><span data-if="cpp" style="display:none;">SetMetrologyModelImageSize</span><span data-if="c" style="display:none;">set_metrology_model_image_size</span></code></a></dt>
<dd>Set the size of the image of metrology objects.</dd>
</dl>
<dl>
<dt><a href="set_metrology_model_param.html"><code><span data-if="hdevelop" style="display:inline;">set_metrology_model_param</span><span data-if="dotnet" style="display:none;">SetMetrologyModelParam</span><span data-if="python" style="display:none;">set_metrology_model_param</span><span data-if="cpp" style="display:none;">SetMetrologyModelParam</span><span data-if="c" style="display:none;">set_metrology_model_param</span></code></a></dt>
<dd>Set parameters that are valid for the entire metrology model.</dd>
</dl>
<dl>
<dt><a href="set_metrology_object_fuzzy_param.html"><code><span data-if="hdevelop" style="display:inline;">set_metrology_object_fuzzy_param</span><span data-if="dotnet" style="display:none;">SetMetrologyObjectFuzzyParam</span><span data-if="python" style="display:none;">set_metrology_object_fuzzy_param</span><span data-if="cpp" style="display:none;">SetMetrologyObjectFuzzyParam</span><span data-if="c" style="display:none;">set_metrology_object_fuzzy_param</span></code></a></dt>
<dd>Set fuzzy parameters or fuzzy functions for a metrology model.</dd>
</dl>
<dl>
<dt><a href="set_metrology_object_param.html"><code><span data-if="hdevelop" style="display:inline;">set_metrology_object_param</span><span data-if="dotnet" style="display:none;">SetMetrologyObjectParam</span><span data-if="python" style="display:none;">set_metrology_object_param</span><span data-if="cpp" style="display:none;">SetMetrologyObjectParam</span><span data-if="c" style="display:none;">set_metrology_object_param</span></code></a></dt>
<dd>Set parameters for the metrology objects of a metrology model.</dd>
</dl>
<dl>
<dt><a href="write_metrology_model.html"><code><span data-if="hdevelop" style="display:inline;">write_metrology_model</span><span data-if="dotnet" style="display:none;">WriteMetrologyModel</span><span data-if="python" style="display:none;">write_metrology_model</span><span data-if="cpp" style="display:none;">WriteMetrologyModel</span><span data-if="c" style="display:none;">write_metrology_model</span></code></a></dt>
<dd>Write a metrology model to a file.</dd>
</dl>
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